A method of calibrating acceleration data signals from a set of accelerometers, and angular rate data signals from a set of gyroscopes within a combined gps/IGS includes generating navigation data as a function of the acceleration data signals, the angular rate data signals, and prior navigation data. The method further includes combining the navigation data with gps data via a kalman filter, so as to produce corrected navigation data, navigation correction data, acceleration correction data and angular rate correction data. The method further includes modifying the acceleration data signals as a function of the acceleration correction data so as to calibrate the acceleration data signals, and modifying the angular rate data signals as a function of the angular rate correction data, so as to calibrate the angular data signals.
|
1. A method of calibrating acceleration data signals from a set of accelerometers, and angular rate data signals from a set of gyroscopes within a combined gps/IGS, comprising:
generating navigation data as a function of the acceleration data signals, the angular rate data signals, and prior navigation data; combining the navigation data with gps data via a kalman filter, so as to produce corrected navigation data, navigation correction data, acceleration correction data and angular rate correction data; modifying the acceleration data signals as a function of the acceleration correction data so as to calibrate the acceleration data signals, and modifying the angular rate data signals as a function of the angular rate correction data, so as to calibrate the angular data signals.
44. A system for calibrating acceleration data signals from a set of accelerometers, and angular rate data signals from a set of gyroscopes within a combined gps/IGS, comprising:
means for generating navigation data as a function of the acceleration data signals, the angular rate data signals, and prior navigation data; means for combining the navigation data with gps data, so as to produce corrected navigation data, navigation correction data, acceleration correction data and angular rate correction data; means for modifying the acceleration data signals as a function of the acceleration correction data so as to calibrate the acceleration data signals, and for modifying the angular rate data signals as a function of the angular rate correction data, so as to calibrate the angular data signals.
29. A system for calibrating acceleration data signals from a set of accelerometers, and angular rate data signals from a set of gyroscopes within a combined gps/IGS, comprising:
a navigation unit for generating navigation data as a function of the acceleration data signals, the angular rate data signals, and prior navigation data; a kalman filter for combining the navigation data with gps data, so as to produce corrected navigation data, navigation correction data, acceleration correction data and angular rate correction data; a compensator for modifying the acceleration data signals as a function of the acceleration correction data so as to calibrate the acceleration data signals, and modifying the angular rate data signals as a function of the angular rate correction data, so as to calibrate the angular data signals.
2. A method according to
3. A method according to
4. A method according to
5. A method according to
6. A method according to
7. A method according to
8. A method according to
9. A method according to
10. A method according to
11. A method according to
12. A method according to
13. A method according to
14. A method according to
15. A method according to
16. A method according to
17. A method according to
18. A method according to
19. A method according to
20. A method according to
21. A method according to
22. A method according to
23. A method according to
24. A method according to
25. A method according to
26. A method according to
27. A method according to
28. A method according to
30. A system according to
31. A system according to
32. A system according to
33. A system according to
34. A system according to
35. A system according to
36. A system according to
37. A system according to
38. A system according to
39. A system according to
40. A system according to
41. A system according to
42. A system according to
43. A system according to
|
This application claims the benefit of U.S. Provisional Application No. 60/290,044 entitled "METHOD OF CALIBRATING AN IG/GP NAVIGATIONAL SYSTEM" filed on May 11, 2001, the disclosure of which is entirely incorporated herein by reference.
The present invention relates to navigation systems, and more particularly, to methods of improving the performance of navigational systems by utilizing one or more external sources of information, for example a global positioning (GP) system (also referred to herein as GPS).
Typical prior art inertial guidance (IG) systems can calculate position with a high degree of accuracy. To attain such accuracy, these IG systems require precise gyroscopes that are extremely costly, but are characterized by a low measurement error, typically on the order of 100 degrees per hour. By contrast, many commercial applications use a lower grade of gyroscope, typically a micro-machine gyroscope, which is relatively inexpensive. These micro-machine gyroscopes include a relatively large measurement error, typically ranging from approximately one degree to ten degrees per second. Such low-grade gyroscopes are most suitable for gross movement detection (e.g., detection of automobile roll-over, and air bag deployment systems) rather than fine movement detection required by an IG system.
Gyroscope measurement error can generally be divided into the categories of bias error and scaling error. All gyroscopes have a certain degree of measurement error that is present upon initialization, referred to as bias error. The instrument using the gyroscope can apply some measure of compensation for this error, but the effectiveness of such compensation is limited because the actual degree of initialization error may be different for each individual gyroscope. In addition, each time an individual gyroscope is turned on, the amount of bias error may be different. For instance, one initialization might result in an error of one degree per second and the next initialization might result in an error of two degrees per second.
The second category of error, referred to herein as scaling error, that accumulates over the angle through which a gyroscope is being rotated. Scale factor error is essentially an "input to output" error, i.e., the difference between the actual angle of rotation the gyroscope experiences and the angle of rotation indicated at the gyroscope output. A gyroscope indicating that it had turned ninety degrees when it had, in fact, turned ninety-two degrees, is an example of scaling error. The amount of scaling error may be affected by various environmental factors, so that a fixed compensation value will not be sufficient to produce completely accurate data.
GPS navigation systems are widely used and are rapidly being incorporated into many newly manufactured commercial vehicles. Such vehicles often operate in city environments, however, resulting in substantial blackout periods while in so-called "urban icanyons," i.e., while between tall buildings that obscure the line-of-sight to the GPS satellites. A collocated IG system can provide continuous navigational information during these blackout periods, but the high cost of the precise gyroscopes required by typical prior art IG systems virtually precludes their use in a commercial vehicle. Hence, a general need exists for a method of improving the accuracy of low grade gyroscopes. It is an object of the present invention to substantially overcome the above-identified disadvantages and drawbacks of the prior art.
U.S. Pat. No. 4,590,569, entitled "Navigation System Including An Integrated Electronic Chart Display", assigned to Navigation Sciences Inc. (Bethesda, Md.), describes a navigation system particularly adapted for ships making a passing within a harbor or the like. The system utilizes signal inputs from on-board vessel position determining equipment such as Loran or Decca apparatus and an on-board object detecting equipment such as a radar or sonar apparatus. The system further includes an on-board vessel position computer which operates in a differential Loran mode in response to observed Loran time differences, stored data from an initial calibration, and Loran grid offset data from an on-shore monitor system to compute a highly accurate current or present position fix in longitude and latitude whereupon the computer causes a predetermined electronic chart to be displayed in color on the screen of a cathode ray tube, being generated from a plurality of electronic charts stored in the form of digital files in memory. The selected chart, together with the present position of the ship, is displayed along with preselected alpha-numeric indicia of data relating to bearings, way points, ranges, "time to go", etc., also generated in accordance with the computed vessel position. Radar target returns of the local land mass and other stationary moving targets are additionally received by the ship's radar. The radar image of the target echoes is next referenced to and superimposed on the electronic chart generated; however, the radar's land mass echoes are suppressed in favor of the electronic chart land mass while displaying all other targets.
U.S. Pat. No. 5,194,872, entitled "Inertial Navigation System With Automatic Redundancy And Dynamic Compensation Of Gyroscope Drift Error," assigned to Charles Stark Draper Laboratory, Inc. (Cambridge, Mass.), describes an inertial navigation system with automatic redundancy and dynamically calculated gyroscopic drift compensation. The system utilizes three, two-degree of freedom gyroscopes arranged whereby any two of the gyroscopes form an orthogonal triad of measurement sensitive axes. The input axes of the three gyroscopes form three pairs of parallel input axes, each pair of parallel input axes corresponding to one axis of the orthogonal triad of axes. The three gyroscopes are operated in a plurality of pre-selected combinations of both clockwise and counter clockwise directions, thus changing the direction of the angular momentum vector by 180° Parity equations are formed from each pair of gyroscope outputs whose measurement sensitive axes are parallel. The parity equations include combinations of gyroscope pairs that have been operated in both the clockwise and counterclockwise directions. Gyroscope drift estimates are then computed using the parity equations to provide individual gyroscope lumped drift corrections (self-calibration) to the inertial guidance and navigation system.
U.S. Pat. No. 5,527,003, entitled "Method For In-Field Updating Of The Gyro Thermal Calibration Of An Inertial Navigation System", assigned to Litton Systems, Inc. (Woodland Hills, Calif.), describes an in-field method for correcting the thermal bias error calibration of the gyros of a strapdown inertial navigation system. The method is begun after initial alignment while the aircraft remains parked with the inertial navigation system switched to navigation mode. Measurements are made of navigation system outputs and of gyro temperatures during this data collection period. A Kalman filter processes the navigation system outputs during this time to generate estimates of gyro bias error that are associated with the corresponding gyro temperature measurements. Heading error correcting is performed after the extended alignment data collection period as the aircraft taxis prior to takeoff. The gyro bias error-versus-temperature data acquired, along with the heading error corrections, are employed to recalibrate the existing thermal model of gyro bias error by means of an interpolation process that employs variance estimates as weighting factors.
U.S. Pat. No. 5,786,790, entitled "On-The-Fly Accuracy Enhancement For Civil GPS Receivers," assigned to Northrop Grumman Corporation (Los Angeles, Calif.), describes a method and means for enhancing the position accuracy of a civil or degraded accuracy GPS receiver by compensating for errors in its position solution with data derived from a military, or precise accuracy, GPS receiver. The civil GPS receiver may be disposed in a mobile expendable vehicle and the military receiver in a mobile launch vehicle. The compensating data is obtained by a comparison of the pseudorange measurements of the military GPS set and another civil GPS set disposed with it in the launch vehicle and attached to the same antenna. Two embodiments are disclosed involving variations of calibration, 1) an On-the-Fly Relative Navigation technique, applicable when the expendable receiver tracks the same satellites as the military and civil sets are tracking, wherein the position bias determined from the measurements of the two launch sets is transferred to the expendable receiver and used to offset its solution, and 2) an On-the-Fly Differential Navigation system, used when the expendable receiver is not tracking the same satellites as the launch sets, wherein the correction process is performed relative to the military set's GPS position solution.
In one aspect, the invention comprises a method of calibrating acceleration data signals from a set of accelerometers, and angular rate data signals from a set of gyroscopes within a combined GPS/IGS. The method includes generating navigation data as a function of the acceleration data signals, the angular rate data signals, and prior navigation data. The method further includes combining the navigation data with GPS data via a Kalman filter, so as to produce corrected navigation data, navigation correction data, acceleration correction data and angular rate correction data. The method further includes modifying the acceleration data signals as a function of the acceleration correction data so as to calibrate the acceleration data signals, and modifying the angular rate data signals as a function of the angular rate correction data, so as to calibrate the angular data signals.
Another embodiment of the invention further includes receiving the set of acceleration data signals from a set of three mutually orthogonal accelerometers.
Another embodiment of the invention further includes receiving the set of angular rate data signals from a set of three mutually orthogonal gyroscopes.
In another embodiment of the invention, the acceleration correction data includes at least one acceleration bias correction factor. Modifying the acceleration data signals further includes adding the at least one acceleration bias correction factor to the acceleration data signals.
In another embodiment of the invention, the acceleration correction data includes three acceleration bias correction factors corresponding to three accelerometer data signals. The method further includes modifying the acceleration data signals further includes adding each of the three acceleration bias correction factors to the corresponding acceleration data signal.
Another embodiment of the invention further includes storing the at least one acceleration bias correction factor in a memory device, subsequently retrieving the at least one acceleration bias correction factor from the memory device, and adding the retrieved acceleration bias correction factor to the corresponding acceleration data signal.
In another embodiment of the invention, the angular rate correction data includes at least one gyroscope bias correction factor. Modifying the angular rate data signals further includes adding the at least one gyroscope bias correction factor to the angular rate data signals.
In another embodiment of the invention, the angular rate correction data includes three gyroscope bias correction factors corresponding to three angular rate data signals. Modifying the angular rate data signals further includes adding each of the three gyroscope bias correction factors to the corresponding angular rate data signal.
Another embodiment of the invention further includes storing the at least one angular rate bias correction factor in a memory device, subsequently retrieving the at least one angular rate bias correction factor from the memory device, and adding the retrieved angular rate bias correction factor to the corresponding angular rate data signal.
In another embodiment of the invention, the angular rate correction data includes at least one gyroscope scaling correction factor. Modifying the angular rate data signals further includes multiplying the at least one gyroscope scaling correction factor by the angular rate data signals.
In another embodiment of the invention, the angular rate correction data includes three gyroscope scaling correction factors corresponding to three angular rate data signals. Modifying the angular rate data signals further includes multiplying each of the three gyroscope scaling correction factors by the corresponding angular rate data signal.
Another embodiment of the invention further includes storing the at least one gyroscope scaling correction factor in a memory device, subsequently retrieving the at least one gyroscope scaling correction factor from the memory device, and multiplying the retrieved gyroscope scaling correction factor to the corresponding angular rate data signal.
In another embodiment of the invention, modifying the acceleration data signals further includes generating at least one acceleration bias correction factor. The at least one bias correction factor is a predetermined function of the acceleration correction data, the acceleration data signals, and parameters related to the accelerometers. The method further includes adding the at least one acceleration bias correction factor to the acceleration data signals.
In another embodiment of the invention, generating at least one acceleration bias correction factor further includes combining the acceleration correction data, the acceleration data signals, and one or more parameters related to the accelerometers as inputs to an algorithm. The algorithm may be implemented by a sequence of operations executed by a processor. Alternately, the algorithm may be implemented by a logic circuit.
In another embodiment of the invention, generating at least one acceleration bias correction factor further includes combining the acceleration correction data, the acceleration data signals, and one or more parameters related to the accelerometers as inputs to a look up table.
In another embodiment of the invention, modifying the angular rate data signals further includes generating at least one gyroscope bias correction factor. The at least one gyroscope bias correction factor is a predetermined function of the angular rate correction data, the angular data signals, and parameters related to the gyroscopes. The method further includes adding the at least one gyroscope bias correction factor to the angular rate data signals.
In another embodiment of the invention, generating at least one gyroscope bias correction factor further includes combining the angular rate correction data, the angular data signals, and parameters related to the gyroscopes as inputs to an algorithm. The algorithm may be implemented by a sequence of operations executed by a processor. Alternately, the algorithm may be implemented by a logic circuit.
In another embodiment of the invention, generating at least one gyroscope bias correction factor further includes combining the angular rate correction data, the angular data signals, and one or more parameters related to the gyroscopes as inputs to a look up table.
In another embodiment of the invention, modifying the angular rate data signals further includes generating at least one gyroscope scaling correction factor. The at least one gyroscope scaling factor is a predetermined function of the angular rate correction data, the angular data signals, and one or more parameters related to the gyroscopes, and multiplying the at least one gyroscope scaling correction factor by the angular rate data signals.
In another embodiment of the invention, generating at least one gyroscope scaling correction factor further includes combining the angular rate correction data, the angular data signals, and one or more parameters related to the gyroscopes as inputs to an algorithm. The algorithm may be implemented by a sequence of operations executed by a processor. Alternately, the algorithm may be implemented by a logic circuit.
In another embodiment of the invention, generating at least one gyroscope scaling correction factor further includes combining the angular rate correction data, the angular data signals, and one or more parameters related to the gyroscopes as inputs to a look up table.
In another embodiment of the invention, combining the navigation data with GPS data further includes receiving pseudo range rate data and pseudo rate data from the GPS. The method further includes combining the pseudo range rate data and pseudo rate data with the navigation data.
In another aspect, the invention comprises a system for calibrating acceleration data signals from a set of accelerometers, and angular rate data signals from a set of gyroscopes within a combined GPS/IGS. The system includes a navigation unit for generating navigation data as a function of the acceleration data signals, the angular rate data signals, and prior navigation data. The system further includes a Kalman filter for combining the navigation data with GPS data. The Kalman filter produces corrected navigation data, navigation correction data, acceleration correction data and angular rate correction data. The system further includes a compensator for modifying the acceleration data signals as a function of the acceleration correction data so as to calibrate the acceleration data signals. The compensator also modifies the angular rate data signals as a function of the angular rate correction data, so as to calibrate the angular data signals.
In another embodiment of the invention, the set of accelerometers is constructed and arranged so as to be mutually orthogonal.
In another embodiment of the invention, the set of gyroscopes is constructed and arranged so as to be mutually orthogonal.
In another embodiment of the invention, the acceleration correction data includes at least one acceleration bias correction factor, and the compensator includes an acceleration adder module for adding the at least one acceleration bias correction factor to the acceleration data signals.
In another embodiment of the invention, the acceleration correction data includes three acceleration bias correction factors corresponding to the three accelerometer data signals, and the compensator includes an acceleration adder module for adding each of the three acceleration bias correction factors to the corresponding acceleration data signals.
Another embodiment of the invention further includes a memory device for storing the at least one acceleration bias correction factor.
In another embodiment of the invention, the angular rate correction data includes at least one gyroscope bias correction factor, and the compensator includes a gyroscope adder module for adding the at least one gyroscope bias correction factor to the angular rate data signals.
In another embodiment of the invention, the angular rate correction data includes three gyroscope bias correction factors, and the compensator includes a gyroscope adder module for adding the three gyroscope bias correction factors to the corresponding angular rate data signals.
Another embodiment of the invention, further includes a memory device for storing the at least one gyroscope bias correction factor.
In another embodiment of the invention, the angular rate correction data includes at least one gyroscope scaling correction factor, and the compensator includes a gyroscope multiplier module for multiplying the at least one gyroscope scaling correction factor by the angular rate data signals.
In another embodiment of the invention, the angular rate correction data includes three gyroscope scaling correction factors, and the compensator includes a gyroscope multiplier module for multiplying the three gyroscope scaling correction factors by the corresponding angular rate data signals.
Another embodiment of the invention further includes a memory device for storing the at least one gyroscope scaling correction factor.
Another embodiment of the invention further includes an acceleration calculation module for generating at least one acceleration bias correction factor. The at least one acceleration bias correction factor is a predetermined function of the acceleration correction data, the acceleration data signals, and one or more parameters related to the accelerometers.
Another embodiment of the invention further including a gyroscope bias factor calculation module for generating at least one gyroscope bias correction factor. The gyroscope bias correction factor is a predetermined function of the angular rate correction data, the angular data signals, and one or more parameters related to the gyroscopes.
Another embodiment of the invention further includes a gyroscope scaling factor calculation module for generating at least one gyroscope scaling correction factor. The gyroscope scaling correction factor is a predetermined function of the angular rate correction data, the angular data signals, and one or more parameters related to the gyroscopes.
In another aspect, the invention comprises a system for calibrating acceleration data signals from a set of accelerometers, and angular rate data signals from a set of gyroscopes within a combined GPS/IGS. The system includes means for generating navigation data as a function of the acceleration data signals, the angular rate data signals, and prior navigation data. The system further includes means for combining the navigation data with GPS data, so as to produce corrected navigation data, navigation correction data, acceleration correction data and angular rate correction data. The system also includes means for modifying the acceleration data signals as a function of the acceleration correction data so as to calibrate the acceleration data signals, and means for modifying the angular rate data signals as a function of the angular rate correction data, so as to calibrate the angular data signals.
The foregoing and other objects of this invention, the various features thereof, as well as the invention itself, may be more fully understood from the following description, when read together with the accompanying drawings in which:
In operation, IGS unit 105 calculates location and position information using data from the accelerometers and the gyroscopes, and integrates this location and position information with the pseudo rate data 170 and the pseudo range rate data 175 derived from GPS unit 110. The end result is corrected navigation data 180 that is provided via an RS 232 interface for use by other systems associated with the GP/IG navigational system 100.
More specifically, the compensator 125 receives acceleration data from accelerometers 115A, 115B, and 115C, and angular rate data from gyroscopes 120A, 120B, and 120C. The compensator further receives acceleration correction data δA 135A and angular rate correction data δR 140A. Compensator 125 uses the acceleration data, the angular rate data, δA 135A and δR 140A to compute acceleration data 135 and rate data 140. Navigation unit 145 uses the acceleration data 135 and rate data 140 from the compensator 125, along with navigation correction data 190 from the Kalman filter 155 to compute navigation data 150. The correction data 190 includes correction for position signal δP, correction for velocity signal δV, correction for heading signal δH, correction for pitch signal δp, and correction for roll signal δr. The navigation data 150 includes position data P, velocity data V, heading data H, roll data r, and pitch data p. In one embodiment, the compensator 125 includes a software module that is synchronized with navigation unit 145 and the Kalman filter 155 by use of a common reference, IGS clock 130. Other embodiments of the compensator 125 may include a hardware implementation of the compensator functions as described in more detail herein.
The Kalman filter 155 receives the navigation data 150 from the navigation unit 145, along with the pseudo rate data 170 and the pseudo range rate data 175 (when available), and produces corrected navigation data 180, correction data 190, acceleration correction data δA 135A and angular rate correction data δR 140A. The Kalman filter 155 implements an optimal recursive data processing algorithm that combines all of the available input data (i.e., the navigation data 150, the pseudo rate data 170 and the pseudo range rate data 175) to generate an overall "best estimate" of the corrected navigational data 180. The general nature and structure of a Kalman filter has evolved over the past 40 years and is well known in the art, and is therefore not within the scope of this disclosure. Based on the relationship between the input navigation data 150 and the output corrected navigation data, the Kalman filter 155 also generates the correction data 190 for use by the navigation unit 145 to further refine the available navigational data, along with the acceleration correction data δA 135A and angular rate correction data δR 140A for the compensator 125.
The acceleration correction data δA 135A from the Kalman filter includes three separate acceleration bias correction factors, one for each of the three accelerometers 115A, 115B and 115C. The three acceleration bias correction factors, referred to herein as KBAA, KBAB, and KBAC, correspond to the three accelerometers 115A, 115B and 115C, respectively. In operation, the acceleration adder module 245 reads the three current acceleration bias correction factors from the acceleration correction factor memory 250 and adds each correction factor to the acceleration data from the corresponding accelerometer output. In particular, the acceleration adder module 245 adds KBAA to the acceleration data from accelerometer 115A, adds KBAB to the acceleration data from accelerometer 115B, and adds KBAC to the acceleration data from accelerometer 115C. The acceleration bias correction factors may be positive or negative, so that a compensation value may be added or subtracted, respectively, from the corresponding acceleration data streams. Further, one or more of the acceleration bias correction factors may include a value of zero, in which case the corresponding acceleration data streams will remain unchanged. The three corrected acceleration data streams exit the compensator 125 as acceleration data 135.
The angular rate correction data δR 140A from the Kalman filter 155 includes two components for each of the gyroscope outputs 120A, 120B and 120C. One component is a gyroscope bias correction factor that corrects the gyroscope bias error. The other component is a gyroscope scaling correction factor that corrects the gyroscope scaling error. The three gyroscope bias correction factors are referred to herein as KBGA, KBGB and KBGC, corresponding to gyroscopes 120A, 120B and 120C, respectively. The three gyroscope scaling correction factors are referred to herein as KSFA, KSFB, and KSFC, corresponding to gyroscopes 120A, 120B and 120C, respectively. In operation, the adder module 205 reads the three current gyroscope bias correction factors from the gyroscope correction factor memory 210 and adds each correction factor to the angular rate data stream from the corresponding accelerometer output. In particular, the adder module adds KBGA to the angular rate data from gyroscope 120A, adds KBGB to the angular rate data from gyroscope 120B, and adds KBGC to the angular rate data from accelerometer 120C. The multiplier module 215 reads the three current scaling correction factors from the gyroscope correction factor memory 210 and multiplies each of the scaling correction factors by the corresponding angular rate data stream. In particular, the multiplier module 215 multiplies KSFA by the angular rate data from gyroscope 120A, multiplies KSFB by the angular rate data from gyroscope 120B, and multiplies KSFC by the angular rate data from gyroscope 120C. The three corrected angular rate data streams exit the compensator 125 as acceleration data 135.
In the embodiment described in
In another embodiment of the invention, illustrated in
In the embodiment of
Similarly, the gyroscope bias calculation module 220 and the gyroscope scaling factor calculation module 225 implement algorithms that combine the angular rate data from the gyroscopes and the angular rate correction data δR 140A from the Kalman filter 155, to produce three gyroscope bias correction factors and three gyroscope scaling factor correction factors, respectively. The gyroscope bias calculation module 220 stores the gyroscope bias correction factors KBGA, KBGB and KBGC in the gyroscope correction factor memory 210, and the gyroscope scaling factor calculation module 225 stores the gyroscope scaling correction factors KSFA, KSFB, and KSFC in the gyroscope correction factor memory 210. These stored correction factors may be used in the event the angular rate correction data δR 140A drops out or otherwise becomes invalid, or they may be used as an initial correction value upon the next system power-up. The algorithm used to produce the gyroscope bias correction factors and the gyroscope scaling correction factors may also use one or more parameters related to the characteristics of the gyroscopes. Such parameters are unique to the individual gyroscopes and may include information such as known bias error range, bias verses angular rate data characteristics, and other a priori information that may be useful in determining gyroscope bias correction factors and gyroscope scaling correction factors.
In yet another embodiment, shown in
Step 300 Initializing Compensator
Power is applied to components within compensator 125.
Step 305 Acquire Gyroscope Rate Data
Compensator 125 obtains rate data from gyroscopes 120A, 120B and 120C.
Step 310 Acquire Bias Correction Factors from Memory; Supply to Adder
Compensator 125 acquires last saved bias correction factors KBGA, KBGB and KBGC from memory 210, and supplies those correction factors to adder 205.
Step 315 Add Bias Correction Factors to Corresponding Gyroscope Rate Data Stream
Adder 205 adds the appropriate bias correction factor to each of the gyroscope data streams.
Step 320 Acquire Scaling Correction Factors from Memory Supply to Multiplier
Compensator 125 acquires last saved scaling correction factors KSFA, KSFB and KSFC from memory 210, and supplies those correction factors to multiplier 225.
Step 325 Multiply Scaling Correction Factors by Corresponding Gyroscope Rate Data Stream
Multiplier 225 multiplies the appropriate scaling correction factor by each of the gyroscope data streams.
Step 330 Output Data to Navigation Unit
Compensator 125 provides corrected rate data R 140 to the navigation unit 145.
Step 335 Calculate Navigation Data; Send to Kalman Filter
The Kalman filter 155 optimizes the navigation data based on past and present navigation information, along with data from the GPS unit 110.
Step 340 Calculate Rate Correction Factors δR
The Kalman filter also generates the rate correction data that the compensator 125 uses to correct data from the gyroscopes.
Step 345 Update Gyroscope Correction Factor Memory
The compensator 125 updates the gyroscope correction factor memory 210 via rate correction data δR.
Step 350 Acquire Accelerometer Data
Compensator 125 obtains acceleration data from accelerometers 115A, 115B and 115C. Step 350 and step 305 are substantially contemporaneous.
Step 355 Acquire Bias Correction Factors from Memory; Supply to Adder
Compensator 125 acquires last saved bias correction factors KBAA, KBAB and KBAC from memory 250, and supplies those correction factors to acceleration correction module 255.
Step 360 Add Bias Correction Factors to Corresponding Acceleration Data Stream
Acceleration correction module 255 adds the appropriate bias correction factor to each of the acceleration data streams.
Step 365 Output Data to Navigation Unit
Compensator 125 provides corrected acceleration data A 150 to the navigation unit 145.
Step 370 Calculate Navigation Data; Send to Kalman Filter
The Kalman filter 155 optimizes the navigation data based on past and present navigation information, along with data from the GPS unit 110.
Step 375 Calculate Acceleration Correction Factors δA
The Kalman filter also generates the acceleration correction data that the compensator 125 uses to correct data from the accelerometers.
Step 380 Update Gyroscope Correction Factor Memory
The compensator 125 updates the acceleration correction factor memory 250 via rate correction data δR.
The technique described herein requires an external reference signal to confirm the validity of the data used for navigation. In the embodiments disclosed herein, this external navigation data comes from GPS navigation information. Due to satellite blackout periods, there are times that this GPS navigation information is not available. However, external navigation data could be provided in another embodiment by other external references such as digital maps, odometers, magnetic compasses or manual information input.
The invention may be embodied in other specific forms without departing from the spirit or essential characteristics thereof. The present embodiments are therefore to be considered in respects as illustrative and not restrictive, the scope of the invention being indicated by the appended claims rather than by the foregoing description, and all changes which come within the meaning and range of the equivalency of the claims are therefore intended to be embraced therein.
Perlmutter, Michael S., Humphrey, Ian
Patent | Priority | Assignee | Title |
10168714, | Mar 20 2003 | AGJUNCTION LLC | GNSS and optical guidance and machine control |
11659996, | Mar 23 2007 | Qualcomm Incorporated | Multi-sensor data collection and/or processing |
6826502, | Jan 25 2002 | Honeywell International Inc.; Honeywell International Inc | Methods and systems for calibration and compensation of accelerometers with bias instability |
7328104, | May 17 2006 | Honeywell International Inc. | Systems and methods for improved inertial navigation |
7388539, | Oct 19 2005 | HEMISPHERE GNSS INC | Carrier track loop for GNSS derived attitude |
7437230, | Mar 20 2003 | AGJUNCTION LLC | Satellite based vehicle guidance control in straight and contour modes |
7490008, | Sep 17 2004 | Harris Corporation | GPS accumulated delta range processing for navigation applications |
7689354, | Mar 20 2003 | AGJUNCTION LLC | Adaptive guidance system and method |
7835832, | Jan 05 2007 | AGJUNCTION LLC | Vehicle control system |
7885745, | Dec 11 2002 | AGJUNCTION LLC | GNSS control system and method |
7891103, | Jun 05 2009 | Apple Inc.; Apple Inc | Magnetometer accuracy and use |
7921572, | Jun 05 2009 | Apple Inc. | Accuracy indications for an electronic compass in a portable device |
7948769, | Sep 27 2007 | HEMISPHERE GNSS INC | Tightly-coupled PCB GNSS circuit and manufacturing method |
7962285, | Oct 22 1998 | AMERICAN VEHICULAR SCIENCES LLC | Inertial measurement unit for aircraft |
8000381, | Feb 27 2007 | HEMISPHERE GNSS INC | Unbiased code phase discriminator |
8018376, | Apr 08 2008 | AGJUNCTION LLC | GNSS-based mobile communication system and method |
8061049, | Jun 05 2009 | Apple Inc. | Magnetometer accuracy and use |
8085196, | Mar 11 2009 | HEMISPHERE GNSS INC | Removing biases in dual frequency GNSS receivers using SBAS |
8086405, | Jun 28 2007 | CSR TECHNOLOGY HOLDINGS INC | Compensation for mounting misalignment of a navigation device |
8138970, | Mar 20 2003 | HEMISPHERE GNSS INC | GNSS-based tracking of fixed or slow-moving structures |
8140223, | Mar 20 2003 | HEMISPHERE GNSS INC | Multiple-antenna GNSS control system and method |
8174437, | Jul 29 2009 | HEMISPHERE GNSS INC | System and method for augmenting DGNSS with internally-generated differential correction |
8190337, | Mar 20 2003 | AGJUNCTION LLC | Satellite based vehicle guidance control in straight and contour modes |
8214111, | Jul 19 2005 | AGJUNCTION LLC | Adaptive machine control system and method |
8217833, | Dec 11 2008 | HEMISPHERE GNSS INC | GNSS superband ASIC with simultaneous multi-frequency down conversion |
8239153, | Jun 05 2009 | Apple Inc | Dynamic compass calibration in a portable device |
8265826, | Mar 20 2003 | HEMISPHERE GNSS INC | Combined GNSS gyroscope control system and method |
8271194, | Mar 19 2004 | HEMISPHERE GNSS INC | Method and system using GNSS phase measurements for relative positioning |
8311696, | Jul 17 2009 | AGJUNCTION LLC | Optical tracking vehicle control system and method |
8326533, | Jan 21 2010 | INVENSENSE, INC | Apparatus and methodology for calibration of a gyroscope and a compass included in a handheld device |
8334804, | Sep 04 2009 | HEMISPHERE GNSS INC | Multi-frequency GNSS receiver baseband DSP |
8370102, | Mar 22 2010 | The Boeing Company | Computer aided feature alignment process |
8386129, | Jan 17 2009 | AGJUNCTION LLC | Raster-based contour swathing for guidance and variable-rate chemical application |
8401704, | Jul 22 2009 | AGJUNCTION LLC | GNSS control system and method for irrigation and related applications |
8437970, | Jun 05 2009 | Apple Inc. | Restoring and storing magnetometer calibration data |
8456356, | Oct 08 2007 | HEMISPHERE GNSS INC | GNSS receiver and external storage device system and GNSS data processing method |
8494799, | Jun 05 2009 | Apple Inc. | Dynamic compass calibration in a portable device |
8531180, | Mar 30 2010 | Apple Inc | Determining heading using magnetometer data and angular rate data |
8548649, | Oct 19 2009 | EFC SYSTEMS, INC | GNSS optimized aircraft control system and method |
8566032, | Oct 30 2009 | CSR TECHNOLOGY HOLDINGS INC | Methods and applications for altitude measurement and fusion of user context detection with elevation motion for personal navigation systems |
8583315, | Mar 19 2004 | AGJUNCTION LLC | Multi-antenna GNSS control system and method |
8583326, | Feb 09 2010 | AGJUNCTION LLC | GNSS contour guidance path selection |
8583371, | Dec 23 2010 | Lockheed Martin Corporation | Autonomous gyro temperature calibration |
8594879, | Mar 20 2003 | AGJUNCTION LLC | GNSS guidance and machine control |
8615253, | Jun 03 2011 | Apple Inc.; Apple Inc | State estimation using motion context and multiple input observation types |
8626465, | Mar 30 2010 | Apple Inc. | Calibrating sensor measurements on mobile devices |
8649930, | Sep 17 2009 | AGJUNCTION LLC | GNSS integrated multi-sensor control system and method |
8677640, | Jun 05 2009 | Apple Inc. | Magnetometer accuracy and use |
8686900, | Mar 20 2003 | HEMISPHERE GNSS INC | Multi-antenna GNSS positioning method and system |
8717009, | Oct 06 2010 | Apple Inc.; Apple Inc | Magnetometer calibration |
8718938, | Mar 23 2007 | Qualcomm Incorporated | Multi-sensor data collection and/or processing |
8818650, | Aug 31 2012 | Caterpillar Inc. | Operational parameter determination systems and methods with gear shifting compensation |
8898034, | Jun 03 2009 | Apple Inc. | Automatically identifying geographic direction |
9002566, | Feb 10 2008 | AGJUNCTION LLC | Visual, GNSS and gyro autosteering control |
9020776, | Sep 28 2011 | Caterpillar Inc.; Caterpillar Inc | Inclination angle compensation systems and methods |
9097534, | Sep 05 2008 | GE Energy Power Conversion Technology | Dynamic positioning architecture |
9116002, | Aug 27 2009 | Apple Inc. | Context determination to assist location determination accuracy |
9145144, | Sep 28 2011 | Caterpillar Inc.; Caterpillar Inc | Inclination detection systems and methods |
9151610, | Jun 08 2013 | Apple Inc. | Validating calibrated magnetometer data |
9220410, | Mar 23 2007 | Qualcomm Incorporated | Multi-sensor data collection and/or processing |
9229084, | Oct 06 2010 | Apple Inc. | Magnetometer calibration |
9423252, | Sep 11 2012 | Apple Inc | Using clustering techniques to improve magnetometer bias estimation |
9506754, | Jun 05 2009 | Apple Inc. | Magnetometer accuracy and use |
9880562, | Mar 20 2003 | AGJUNCTION LLC | GNSS and optical guidance and machine control |
9886038, | Mar 20 2003 | AGJUNCTION LLC | GNSS and optical guidance and machine control |
RE47055, | Jan 17 2009 | AGJUNCTION LLC | Raster-based contour swathing for guidance and variable-rate chemical application |
RE47101, | Mar 20 2003 | AGJUNCTION LLC | Control for dispensing material from vehicle |
RE47648, | Sep 17 2009 | AGJUNCTION LLC | Integrated multi-sensor control system and method |
RE48154, | Jul 17 2012 | AGJUNCTION LLC | System and method for integrating automatic electrical steering with GNSS guidance |
RE48509, | Jan 17 2009 | AGJUNCTION LLC | Raster-based contour swathing for guidance and variable-rate chemical application |
RE48527, | Jan 05 2007 | AGJUNCTION LLC | Optical tracking vehicle control system and method |
Patent | Priority | Assignee | Title |
4590569, | Oct 14 1983 | NAVIGATION SCIENCES, INC | Navigation system including an integrated electronic chart display |
5194872, | Nov 14 1990 | CHARLES STARK DRAPER LABORATORY, INC , THE, A CORP OF MA | Inertial navigation system with automatic redundancy and dynamic compensation of gyroscope drift error |
5527003, | Jul 27 1994 | Northrop Grumman Systems Corporation | Method for in-field updating of the gyro thermal calibration of an intertial navigation system |
5786790, | Feb 27 1997 | Northrop Grumman Systems Corporation | On-the-fly accuracy enhancement for civil GPS receivers |
6292750, | Nov 04 1998 | American GNC Corporation | Vehicle positioning method and system thereof |
6311129, | Apr 06 1999 | American GNC Corporation | Positioning process and system thereof |
6424914, | Dec 26 2000 | American GNC Corporation | Fully-coupled vehicle positioning method and system thereof |
Executed on | Assignor | Assignee | Conveyance | Frame | Reel | Doc |
Sep 28 2001 | Fibersense Technology Corporation | (assignment on the face of the patent) | / | |||
Oct 12 2001 | PERLMUTTER, MICHAEL S | Fibersense Technology Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012288 | /0760 | |
Oct 12 2001 | HUMPHREY, IAN | Fibersense Technology Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012288 | /0760 | |
Jun 20 2006 | Fibersense Technology Corporation | Litton Systems, Inc | MERGER SEE DOCUMENT FOR DETAILS | 018148 | /0543 | |
Jan 04 2011 | Northrop Grumman Corporation | Northrop Grumman Systems Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 025597 | /0505 |
Date | Maintenance Fee Events |
Mar 16 2007 | M2551: Payment of Maintenance Fee, 4th Yr, Small Entity. |
Apr 10 2008 | ASPN: Payor Number Assigned. |
Mar 14 2011 | M1552: Payment of Maintenance Fee, 8th Year, Large Entity. |
Mar 15 2011 | STOL: Pat Hldr no Longer Claims Small Ent Stat |
Mar 12 2015 | M1553: Payment of Maintenance Fee, 12th Year, Large Entity. |
Date | Maintenance Schedule |
Sep 16 2006 | 4 years fee payment window open |
Mar 16 2007 | 6 months grace period start (w surcharge) |
Sep 16 2007 | patent expiry (for year 4) |
Sep 16 2009 | 2 years to revive unintentionally abandoned end. (for year 4) |
Sep 16 2010 | 8 years fee payment window open |
Mar 16 2011 | 6 months grace period start (w surcharge) |
Sep 16 2011 | patent expiry (for year 8) |
Sep 16 2013 | 2 years to revive unintentionally abandoned end. (for year 8) |
Sep 16 2014 | 12 years fee payment window open |
Mar 16 2015 | 6 months grace period start (w surcharge) |
Sep 16 2015 | patent expiry (for year 12) |
Sep 16 2017 | 2 years to revive unintentionally abandoned end. (for year 12) |